Department of Physics, Oregon State University, Corvallis, OR 97331, United States of America.
Phys Biol. 2023 Oct 9;20(6). doi: 10.1088/1478-3975/acfe53.
Contemporary approaches to instance segmentation in cell science use 2D or 3D convolutional networks depending on the experiment and data structures. However, limitations in microscopy systems or efforts to prevent phototoxicity commonly require recording sub-optimally sampled data that greatly reduces the utility of such 3D data, especially in crowded sample space with significant axial overlap between objects. In such regimes, 2D segmentations are both more reliable for cell morphology and easier to annotate. In this work, we propose the projection enhancement network (PEN), a novel convolutional module which processes the sub-sampled 3D data and produces a 2D RGB semantic compression, and is trained in conjunction with an instance segmentation network of choice to produce 2D segmentations. Our approach combines augmentation to increase cell density using a low-density cell image dataset to train PEN, and curated datasets to evaluate PEN. We show that with PEN, the learned semantic representation in CellPose encodes depth and greatly improves segmentation performance in comparison to maximum intensity projection images as input, but does not similarly aid segmentation in region-based networks like Mask-RCNN. Finally, we dissect the segmentation strength against cell density of PEN with CellPose on disseminated cells from side-by-side spheroids. We present PEN as a data-driven solution to form compressed representations of 3D data that improve 2D segmentations from instance segmentation networks.
当代细胞科学中的实例分割方法根据实验和数据结构使用 2D 或 3D 卷积网络。然而,显微镜系统的限制或防止光毒性的努力通常需要记录次优采样的数据,这大大降低了此类 3D 数据的实用性,尤其是在对象之间存在显著轴向重叠的拥挤样本空间中。在这种情况下,2D 分割对于细胞形态学来说更可靠,并且更容易进行注释。在这项工作中,我们提出了投影增强网络(PEN),这是一种新颖的卷积模块,它处理次采样的 3D 数据并生成 2D RGB 语义压缩,并且与所选的实例分割网络一起进行训练以生成 2D 分割。我们的方法结合了使用低密度细胞图像数据集进行细胞密度增强的扩充技术来训练 PEN,并使用精心策划的数据集来评估 PEN。我们表明,与使用最大强度投影图像作为输入相比,PEN 中的 CellPose 学习到的语义表示编码了深度,并大大提高了分割性能,但对基于区域的网络(如 Mask-RCNN)的分割没有类似的帮助。最后,我们在并排球体的弥散细胞上用 CellPose 对 PEN 的分割强度与细胞密度进行了剖析。我们提出 PEN 作为一种数据驱动的解决方案,用于形成 3D 数据的压缩表示,从而提高实例分割网络的 2D 分割。